Personalized Online Learning: Context Driven Massive Open Online Courses

Personalized Online Learning: Context Driven Massive Open Online Courses

Benmedakhene Nadira, Derdour Makhlouf, Mohamed Amroune
DOI: 10.4018/IJWLTT.20211101.oa8
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Abstract

The success of MOOC (massive open online courses) is rapidly increasing. Most educational institutions are highly interested in these online platforms, which embrace intellectual and educational objectives and provide various opportunities for lifelong learning. However, many limitations, such as learners' diversity, lack of motivation, affected learners' outcomes, which unfortunately raised the dropout rate. Thus, multiple solutions were afforded on MOOC platforms to tackle these common problems. This paper suggests a model outline of a customizable system Context-Driven Massive Open Online Courses that could be implemented in any learning environment, and that goes hand in hand with learners' context to boost their motivation towards learning, and to help identify their learning needs. The paper introduces CD-MOOC following a learner-based approach by employing two types of users' data; long-term and short-term data assembled form learners' online traces when interacting on the platform. The data help users design their own learning path based on their context and preferences.
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Notwithstanding that there are several types of learning online platforms, the lack of motivation still represents one of the most remarkable causes, which can ultimately lead to drop out. One of the predicted solutions is using learners' context to personalize the platform settings where user context is a mandatory parameter in the design of learning systems. It required a fundamental analysis of users' needs to use the right context variable, which guarantees adequate learning experience for each learner based on his habits. Therefore, adaptation can be defined as a system's capacity to deal with particular cases and adjust the environment accordingly.

According to Marie et al. (2011), there are two perspectives for managing the learning/teaching process; the first is the learner-based approach, and the second is the teacher-based approach. Many research papers have discussed personalized learning and suggested models and architectures that tackled the problem in reference to these two perspectives:

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